I want to use multiprocessing.Pool, but multiprocessing.Pool can't abort a task after a timeout. I found solution and some modify it.

from multiprocessing import util, Pool, TimeoutError
from multiprocessing.dummy import Pool as ThreadPool
import threading
import sys
from functools import partial
import time

def worker(y):
    print("worker sleep {} sec, thread: {}".format(y, threading.current_thread()))
    start = time.time()
    while True:
       if time.time() - start >= y:
       # show work progress
    return y

def collect_my_result(result):
    print("Got result {}".format(result))

def abortable_worker(func, *args, **kwargs):
    timeout = kwargs.get('timeout', None)
    p = ThreadPool(1)
    res = p.apply_async(func, args=args)
        # Wait timeout seconds for func to complete.
        out = res.get(timeout)
    except TimeoutError:
        print("Aborting due to timeout {}".format(args[1]))
        # kill worker itself when get TimeoutError
        return out

def empty_func():

if __name__ == "__main__":
    TIMEOUT = 4
    pool = Pool(processes=4)

    # k - time to job sleep
    featureClass = [(k,) for k in range(20, 0, -1)]  # list of arguments
    for f in featureClass:
        # check available worker

        # run job with timeout
        abortable_func = partial(abortable_worker, worker, timeout=TIMEOUT)
        pool.apply_async(abortable_func, args=f, callback=collect_my_result)


main modification - worker process exit with sys.exit(1). It's kill worker process and kill job thread, but i'm not sure that this solution is good. What potential problems can i get, when process terminate itself with running job?

  • Ok. I guess you'd better handle timeout in your worker() and write the results to a common collection. In this way, you just need to call join() on all threads and then process the results. If your system is not heavily loaded, things should just work.
    – mljli
    Aug 3, 2016 at 6:33

1 Answer 1


There is no implicit risk in stopping a running job, the OS will take care of correctly terminating the process.

If your job is writing on files, you might end up with lots of truncated files on your disk.

Some small issue might also occur if you write on DBs or if you are connected with some remote process.

Nevertheless, Python standard Pool does not support worker termination on task timeout. Terminating processes abruptly might lead to weird behaviour within your application.

Pebble processing Pool does support timing-out tasks.

from pebble import ProcessPool
from concurrent.futures import TimeoutError


def function(one, two):
    return one + two

with ProcessPool() as pool:
    future = pool.schedule(function, args=(1, 2), timeout=TIMEOUT_SECONDS)

        result = future.result()
    except TimeoutError:
        print("Future: %s took more than 5 seconds to complete" % future)
  • it's looks good. Do you now success stories using it in production?
    – rusnasonov
    Aug 8, 2016 at 4:18
  • 1
    Not sure I understand correctly. You want success stories of Pebble in production or of systems killing processes? Pebble is a quite stable library with a fair amount of downloads.
    – noxdafox
    Aug 9, 2016 at 19:14
  • Yes, you understand correctly. Do you know projects which using peeble?
    – rusnasonov
    Aug 10, 2016 at 1:14
  • 1
    We use Pebble in production on few systems and it works nicely. I don't know any public project using it.
    – noxdafox
    Aug 10, 2016 at 10:42
  • 1
    Thanks @noxdafox , Pebble saved me after 2 days on constant trial and errors of timeout locks.
    – ASHu2
    Jan 10, 2022 at 13:47

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